A patch-based method for repetitive and transient event detection in fluorescence imaging.

Automatic detection and characterization of molecular behavior in large data sets obtained by fast imaging in advanced light microscopy become key issues to decipher the dynamic architectures and their coordination in the living cell. Automatic quantification of the number of sudden and transient ev...

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Main Authors: Jérôme Boulanger, Alexandre Gidon, Charles Kervran, Jean Salamero
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2010-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2955530?pdf=render
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spelling doaj-eb0d6160b72c4da4934b67d2bfc6a23e2020-11-25T01:42:29ZengPublic Library of Science (PLoS)PLoS ONE1932-62032010-01-01510e1319010.1371/journal.pone.0013190A patch-based method for repetitive and transient event detection in fluorescence imaging.Jérôme BoulangerAlexandre GidonCharles KervranJean SalameroAutomatic detection and characterization of molecular behavior in large data sets obtained by fast imaging in advanced light microscopy become key issues to decipher the dynamic architectures and their coordination in the living cell. Automatic quantification of the number of sudden and transient events observed in fluorescence microscopy is discussed in this paper. We propose a calibrated method based on the comparison of image patches expected to distinguish sudden appearing/vanishing fluorescent spots from other motion behaviors such as lateral movements. We analyze the performances of two statistical control procedures and compare the proposed approach to a frame difference approach using the same controls on a benchmark of synthetic image sequences. We have then selected a molecular model related to membrane trafficking and considered real image sequences obtained in cells stably expressing an endocytic-recycling trans-membrane protein, the Langerin-YFP, for validation. With this model, we targeted the efficient detection of fast and transient local fluorescence concentration arising in image sequences from a data base provided by two different microscopy modalities, wide field (WF) video microscopy using maximum intensity projection along the axial direction and total internal reflection fluorescence microscopy. Finally, the proposed detection method is briefly used to statistically explore the effect of several perturbations on the rate of transient events detected on the pilot biological model.http://europepmc.org/articles/PMC2955530?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jérôme Boulanger
Alexandre Gidon
Charles Kervran
Jean Salamero
spellingShingle Jérôme Boulanger
Alexandre Gidon
Charles Kervran
Jean Salamero
A patch-based method for repetitive and transient event detection in fluorescence imaging.
PLoS ONE
author_facet Jérôme Boulanger
Alexandre Gidon
Charles Kervran
Jean Salamero
author_sort Jérôme Boulanger
title A patch-based method for repetitive and transient event detection in fluorescence imaging.
title_short A patch-based method for repetitive and transient event detection in fluorescence imaging.
title_full A patch-based method for repetitive and transient event detection in fluorescence imaging.
title_fullStr A patch-based method for repetitive and transient event detection in fluorescence imaging.
title_full_unstemmed A patch-based method for repetitive and transient event detection in fluorescence imaging.
title_sort patch-based method for repetitive and transient event detection in fluorescence imaging.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2010-01-01
description Automatic detection and characterization of molecular behavior in large data sets obtained by fast imaging in advanced light microscopy become key issues to decipher the dynamic architectures and their coordination in the living cell. Automatic quantification of the number of sudden and transient events observed in fluorescence microscopy is discussed in this paper. We propose a calibrated method based on the comparison of image patches expected to distinguish sudden appearing/vanishing fluorescent spots from other motion behaviors such as lateral movements. We analyze the performances of two statistical control procedures and compare the proposed approach to a frame difference approach using the same controls on a benchmark of synthetic image sequences. We have then selected a molecular model related to membrane trafficking and considered real image sequences obtained in cells stably expressing an endocytic-recycling trans-membrane protein, the Langerin-YFP, for validation. With this model, we targeted the efficient detection of fast and transient local fluorescence concentration arising in image sequences from a data base provided by two different microscopy modalities, wide field (WF) video microscopy using maximum intensity projection along the axial direction and total internal reflection fluorescence microscopy. Finally, the proposed detection method is briefly used to statistically explore the effect of several perturbations on the rate of transient events detected on the pilot biological model.
url http://europepmc.org/articles/PMC2955530?pdf=render
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